Graph neural networks have received increased attention over the past years due to their promising ability to handle graph-structured data, which can be found in many real-world problems such as recommended systems and drug synthesis. Most existing research focuses on using graph neural networks to solve homophilous problems, but little attention has been paid to heterophily-type problems. In this paper, we propose a graph network model for graph coloring, which is a class of representative heterophilous problems. Different from the conventional graph networks, we introduce negative message passing into the proposed graph neural network for more effective information exchange in handling graph coloring problems. Moreover, a new loss function taking into account the self-information of the nodes is suggested to accelerate the learning process. Experimental studies are carried out to compare the proposed graph model with five state-of-the-art algorithms on ten publicly available graph coloring problems and one real-world application. Numerical results demonstrate the effectiveness of the proposed graph neural network.
翻译:过去几年来,由于具有处理图表结构数据的良好能力,如推荐的系统和药物合成等许多现实世界问题中可以找到这种数据,因此,图形神经网络受到越来越多的关注。大多数现有研究侧重于使用图形神经网络解决同质问题,但很少注意偏差型问题。在本文中,我们提出了一个图表颜色的图形网络模型,这是一个具有代表性的异性问题类别。与传统图形网络不同,我们向拟议的图形神经网络引入了负面信息,以便在处理图表颜色问题方面进行更有效的信息交流。此外,建议使用考虑到节点的自我信息的新的损失功能来加速学习过程。进行了实验研究,以便将拟议的图形模型与10个公开提供的图形颜色问题和1个现实世界应用程序的5种最新算法进行比较。数字结果显示了拟议的图形神经网络的有效性。